Denoising Functional Maps: Diffusion Models for Shape Correspondence
Estimating correspondences between pairs of deformable shapes remains a challenging problem. Despite substantial progress, existing methods lack broad generalization capabilities and require category-specific training data. To address these limitations, we propose a fundamentally new approach to shape correspondence based on denoising diffusion models. In our method, a diffusion model learns to directly predict the functional map, a low-dimensional representation of a point-wise map between shapes. We use a large dataset of synthetic human meshes for training and employ two steps to reduce the number of functional maps that need to be learned. First, the maps refer to a template rather than shape pairs. Second, the functional map is defined in a basis of eigenvectors of the Laplacian, which is not unique due to sign ambiguity. Therefore, we introduce an unsupervised approach to select a specific basis by correcting the signs of eigenvectors based on surface features. Our model achieves competitive performance on standard human datasets, meshes with anisotropic connectivity, non-isometric humanoid shapes, as well as animals compared to existing descriptor-based and large-scale shape deformation methods. See our project page 1 for the source code 2 and the datasets.
- Published in:
IEEE Conference on Computer Vision and Pattern Recognition (CVPR) - Type:
Inproceedings - Year:
2025 - Source:
https://www.computer.org/csdl/proceedings-article/cvpr/2025/436400ab899/299b3iVoWpW
Citation information
: Denoising Functional Maps: Diffusion Models for Shape Correspondence, IEEE Conference on Computer Vision and Pattern Recognition (CVPR), 2025, 26899--26909, June, {IEEE} Computer Society, https://www.computer.org/csdl/proceedings-article/cvpr/2025/436400ab899/299b3iVoWpW, Zhuravlev.etal.2025a,
@Inproceedings{Zhuravlev.etal.2025a,
author={Zhuravlev, Aleksei; Lähner, Zorah; Golyanik, Vladislav},
title={Denoising Functional Maps: Diffusion Models for Shape Correspondence},
booktitle={IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
pages={26899--26909},
month={June},
publisher={{IEEE} Computer Society},
url={https://www.computer.org/csdl/proceedings-article/cvpr/2025/436400ab899/299b3iVoWpW},
year={2025},
abstract={Estimating correspondences between pairs of deformable shapes remains a challenging problem. Despite substantial progress, existing methods lack broad generalization capabilities and require category-specific training data. To address these limitations, we propose a fundamentally new approach to shape correspondence based on denoising diffusion models. In our method, a diffusion model learns to...}}